Functional Networks with Applications A Neural-Based Paradigm

Cover of Functional Networks with Applications A Neural-Based Paradigm by Enrique Castillo
Publisher: Springer US
Year: 2013
Language: en
Edition: 1999
Pages: 309
ISBN-13: 9781461375623
Dimensions:
Height: 9.25 Inches
Length: 6.1 Inches
Weight: 1.09790206476 Pounds
Width: 0.73 Inches
Dewey Decimal: 006.3/2, 006.32
Editorial overview Touché

Functional Networks with Applications A Neural-Based Paradigm by Enrique Castillo, published by Springer US on February 11, 2013, is a comprehensive exploration of artificial neural networks and their applications across various fields. This edition, consisting of 309 pages, delves into the structure and functionality of neural networks, which are inspired by brain behavior and consist of interconnected layers of neurons. The book discusses how these networks learn from data, focusing on both structural and parametric learning processes, and highlights the challenges associated with interpreting the results of these learning methods.

Readers will find a detailed examination of the mechanisms behind neural networks, including the processes of learning topology and estimating connection weights. The text emphasizes the significance of activation functions and the trial-and-error approach used to achieve optimal network configurations. Covering topics such as system theory, artificial intelligence, and database management, this book serves as a resource for those interested in the mathematical and computational aspects of neural networks and their practical applications in science and technology.


Official synopsis Publisher

Artificial neural networks have been recognized as a powerful tool to learn and reproduce systems in various fields of applications. Neural net works are inspired by the brain behavior and consist of one or several layers of neurons, or computing units, connected by links. Each artificial neuron receives an input value from the input layer or the neurons in the previ ous layer. Then it computes a scalar output from a linear combination of the received inputs using a given scalar function (the activation function), which is assumed the same for all neurons. One of the main properties of neural networks is their ability to learn from data. There are two types of learning: structural and parametric. Structural learning consists of learning the topology of the network, that is, the number of layers, the number of neurons in each layer, and what neurons are connected. This process is done by trial and error until a good fit to the data is obtained. Parametric learning consists of learning the weight values for a given topology of the network. Since the neural functions are given, this learning process is achieved by estimating the connection weights based on the given information. To this aim, an error function is minimized using several well known learning methods, such as the backpropagation algorithm. Unfortunately, for these methods: (a) The function resulting from the learning process has no physical or engineering interpretation. Thus, neural networks are seen as black boxes.

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This page includes the available description and bibliographic details for “Functional Networks with Applications A Neural-Based Paradigm” by Enrique Castillo. Synopsis preview: Artificial neural networks have been recognized as a powerful tool to learn and reproduce systems in various fields of applications. Neural net works are inspired by the brain behavior and consist of one or several layer…
Who is the author of “Functional Networks with Applications A Neural-Based Paradigm”?
“Functional Networks with Applications A Neural-Based Paradigm” is credited to Enrique Castillo.
When was “Functional Networks with Applications A Neural-Based Paradigm” published?
Publisher: Springer US. Year: 2013.
What is the ISBN for “Functional Networks with Applications A Neural-Based Paradigm”?
ISBN-13: 9781461375623.
What are the book details (language, pages, edition)?
Language: en. Pages: 309. Edition: 1999.

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